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Andreas Scheicher

My Data Science & Analysis Portfolio

Unveiling the stories behind the data

About Me From cooling clouds of atoms to near zero, I have moved to the world of clouds full of data.

Get to know me!

Hi! I'm Andreas and I'm a Data Scientist based in Amsterdam, Netherlands. I come from a background of physics and ventured into the world of ecommerce where I found my fascination for working with data.

I now focus on gaining insights from data and diving into the various aspects of machine learning. Feel free to contact me here.

Contact

My Skills

Python
Pandas
Numpy
Scikit-Learn
Pytorch
SQL
Azure
Git
Docker
Data Mining
Data Cleaning
Data Analysis
Data Visualization
Hypothesis Testing
Statistical Modeling
Machine Learning
Deep Learning
Natural Language Processing
Recommender Systems
Statistics

Projects The following are some excerpts of my previous work and projects

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Predict Scientist Rankings

How well can machine learning predict the ranking of the most impactful scientists? And can it generate personalised recommendations to improve the rankings?

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Azure Functions: Update Spotify Playlist via API

A severless function to add new tracks of the weekly Superfly.fm radio show Yachthafen to a Spotify playlist.

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Visualize Amazon Sales

An interactive visualization of Amazon sales. Adjust the timeframe and products, and compare different smoothing methods.

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Statistical Analysis of the Loudness War

Using Spotify data of tracks from the last 100 years, this project quantifies the trend in recorded music of losing dynamic range in favour of loudness.

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Evolution of Linguistic Diversity (In Development)

This project explores how words evolve to have multiple meanings over time and how people's sensitivity to word variations affects the way word meanings change.

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Contact Reach out to discuss data or explore potential collaborations